IDOL: Unified Dual-Modal Latent Diffusion for Human-Centric Joint Video-Depth Generation
- URL: http://arxiv.org/abs/2407.10937v1
- Date: Mon, 15 Jul 2024 17:36:54 GMT
- Title: IDOL: Unified Dual-Modal Latent Diffusion for Human-Centric Joint Video-Depth Generation
- Authors: Yuanhao Zhai, Kevin Lin, Linjie Li, Chung-Ching Lin, Jianfeng Wang, Zhengyuan Yang, David Doermann, Junsong Yuan, Zicheng Liu, Lijuan Wang,
- Abstract summary: We present IDOL (unIfied Dual-mOdal Latent diffusion) for high-quality human-centric joint video-depth generation.
Our IDOL consists of two novel designs. First, to enable dual-modal generation and maximize the information exchange between video and depth generation.
Second, to ensure a precise video-depth spatial alignment, we propose a motion consistency loss that enforces consistency between the video and depth feature motion fields.
- Score: 136.5813547244979
- License: http://creativecommons.org/licenses/by-sa/4.0/
- Abstract: Significant advances have been made in human-centric video generation, yet the joint video-depth generation problem remains underexplored. Most existing monocular depth estimation methods may not generalize well to synthesized images or videos, and multi-view-based methods have difficulty controlling the human appearance and motion. In this work, we present IDOL (unIfied Dual-mOdal Latent diffusion) for high-quality human-centric joint video-depth generation. Our IDOL consists of two novel designs. First, to enable dual-modal generation and maximize the information exchange between video and depth generation, we propose a unified dual-modal U-Net, a parameter-sharing framework for joint video and depth denoising, wherein a modality label guides the denoising target, and cross-modal attention enables the mutual information flow. Second, to ensure a precise video-depth spatial alignment, we propose a motion consistency loss that enforces consistency between the video and depth feature motion fields, leading to harmonized outputs. Additionally, a cross-attention map consistency loss is applied to align the cross-attention map of the video denoising with that of the depth denoising, further facilitating spatial alignment. Extensive experiments on the TikTok and NTU120 datasets show our superior performance, significantly surpassing existing methods in terms of video FVD and depth accuracy.
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